菜单

关于 🐙 GitHub
arXiv 提交日期: 2026-02-17
📄 Abstract - Advanced Acceptance Score: A Holistic Measure for Biometric Quantification

Quantifying biometric characteristics within hand gestures involve derivation of fitness scores from a gesture and identity aware feature space. However, evaluating the quality of these scores remains an open question. Existing biometric capacity estimation literature relies upon error rates. But these rates do not indicate goodness of scores. Thus, in this manuscript we present an exhaustive set of evaluation measures. We firstly identify ranking order and relevance of output scores as the primary basis for evaluation. In particular, we consider both rank deviation as well as rewards for: (i) higher scores of high ranked gestures and (ii) lower scores of low ranked gestures. We also compensate for correspondence between trends of output and ground truth scores. Finally, we account for disentanglement between identity features of gestures as a discounting factor. Integrating these elements with adequate weighting, we formulate advanced acceptance score as a holistic evaluation measure. To assess effectivity of the proposed we perform in-depth experimentation over three datasets with five state-of-the-art (SOTA) models. Results show that the optimal score selected with our measure is more appropriate than existing other measures. Also, our proposed measure depicts correlation with existing measures. This further validates its reliability. We have made our \href{this https URL}{code} public.

顶级标签: computer vision model evaluation systems
详细标签: biometric evaluation hand gestures score quality ranking metrics feature disentanglement 或 搜索:

高级接受分数:一种用于生物特征量化的整体性度量方法 / Advanced Acceptance Score: A Holistic Measure for Biometric Quantification


1️⃣ 一句话总结

这篇论文提出了一种名为‘高级接受分数’的新评价指标,它通过综合考虑手势识别中得分排序的准确性、趋势一致性以及身份特征分离度,来更全面地评估生物特征量化模型的好坏,实验证明它比现有指标更有效。

源自 arXiv: 2602.15535